Research Area:  Machine Learning
In recent years, several neural networks using Clifford algebra have been studied. Clifford algebra is also called geometric algebra. Complex-valued Hopfield neural networks (CHNNs) are the most popular neural networks using Clifford algebra. The aim of this brief is to construct hyperbolic HNNs (HHNNs) as an analog of CHNNs. Hyperbolic algebra is a Clifford algebra based on Lorentzian geometry. In this brief, a hyperbolic neuron is defined in a manner analogous to a phasor neuron, which is a typical complex-valued neuron model. HHNNs share common concepts with CHNNs, such as the angle and energy. However, HHNNs and CHNNs are different in several aspects. The states of hyperbolic neurons do not form a circle, and, therefore, the start and end states are not identical. In the quantized version, unlike complex-valued neurons, hyperbolic neurons have an infinite number of states.
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Author(s) Name:  Masaki Kobayashi
Journal name:  IEEE Transactions on Neural Networks and Learning Systems
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Publisher name:  IEEE
DOI:  10.1109/TNNLS.2012.2230450
Volume Information:  ( Volume: 24, Issue: 2, Feb. 2013) Page(s): 335 - 341
Paper Link:   https://ieeexplore.ieee.org/abstract/document/6389780